A Neural-Symbolic Architecture for Inverse Graphics Improved by Lifelong Meta-Learning
Titel Konferenzpublikation:
Pattern Recognition
Untertitel Konferenzpublikation:
41st DAGM German Conference, DAGM GCPR 2019, Dortmund, Germany, September 10–13, 2019, Proceedings
Reihentitel:
Lecture Notes in Computer Science
Bandnummer Reihe:
11824
Konferenztitel:
DAGM German Conference on Pattern Recognition (41., 2019, Dortmund))
Tagungsort:
Dortmund
Jahr der Konferenz:
2019
Datum Beginn der Konferenz:
10.09.2019
Datum Ende der Konferenz:
13.09.2019
Verlagsort:
Cham
Verlag:
Springer
Jahr:
2019
Seiten von - bis:
471-484
Sprache:
Englisch
Abstract:
We follow the idea of formulating vision as inverse graphics and propose a new type of element for this task, a neural-symbolic capsule. It is capable of de-rendering a scene into semantic information feed-forward, as well as rendering it feed-backward. An initial set of capsules for graphical primitives is obtained from a generative grammar and connected into a full capsule network. Lifelong meta-learning continuously improves this network’s detection capabilities by adding capsules for new and more complex objects it detects in a scene using few-shot learning. Preliminary results demonstrate the potential of our novel approach. «
We follow the idea of formulating vision as inverse graphics and propose a new type of element for this task, a neural-symbolic capsule. It is capable of de-rendering a scene into semantic information feed-forward, as well as rendering it feed-backward. An initial set of capsules for graphical primitives is obtained from a generative grammar and connected into a full capsule network. Lifelong meta-learning continuously improves this network’s detection capabilities by adding capsules for new and... »